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Predicting ovarian malignancy: application of artificial neural networks to transvaginal and color Doppler flow US.

机译:预测卵巢恶性肿瘤:人工神经网络在经阴道和彩色多普勒超声检查中的应用。

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PURPOSE: To compare the performance of artificial neural networks (ANNs) with that of multiple logistic regression (MLR) models for predicting ovarian malignancy in patients with adnexal masses by using transvaginal B-mode and color Doppler flow ultrasonography (US). MATERIALS AND METHODS: A total of 226 adnexal masses were examined before surgery: Fifty-one were malignant and 175 were benign. The data were divided into training and testing subsets by using a "leave n out method." The training subsets were used to compute the optimum MLR equations and to train the ANNs. The cross-validation subsets were used to estimate the performance of each of the two models in predicting ovarian malignancy. RESULTS: At testing, three-layer back-propagation networks, based on the same input variables selected by using MLR (i.e., women's ages, papillary projections, random echogenicity, peak systolic velocity, and resistance index), had a significantly higher sensitivity than did MLR (96% vs 84%; McNemar test, p = .04). The Brier scores for ANNs were significantly lower than those calculated for MLR (Student t test for paired samples, P = .004). CONCLUSION: ANNs might have potential for categorizing adnexal masses as either malignant or benign on the basis of multiple variables related to demographic and US features.
机译:目的:比较人工神经网络(ANN)和多元逻辑回归(MLR)模型通过阴道阴道B型和彩色多普勒超声检查预测附件型肿块患者卵巢恶性肿瘤的性能。材料与方法:术前共检查了226个附件包块:恶性51例,良性175例。通过使用“省去方法”将数据分为训练和测试子集。训练子集用于计算最佳MLR方程并训练ANN。交叉验证子集用于估计两个模型在预测卵巢恶性肿瘤中的性能。结果:在测试中,基于使用MLR选择的相同输入变量(即,女性年龄,乳头状突起,随机回声,收缩压峰值和阻力指数)的三层反向传播网络的灵敏度明显高于进行了MLR(96%对84%; McNemar检验,p = .04)。 ANN的Brier得分显着低于MLR的得分(配对样本的学生t检验,P = .004)。结论:人工神经网络可能具有根据与人口统计学和美国特征相关的多个变量将附件包块分为恶性或良性的潜力。

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